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An Automated Method for Segmenting White Matter Lesions through Multi-Level Morphometric Feature Classification with Application to Lupus

机译:多级形态特征分类自动分割白质病变的方法在狼疮中的应用

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摘要

We demonstrate an automated, multi-level method to segment white matter brain lesions and apply it to lupus. The method makes use of local morphometric features based on multiple MR sequences, including T1-weighted, T2-weighted, and fluid attenuated inversion recovery. After preprocessing, including co-registration, brain extraction, bias correction, and intensity standardization, 49 features are calculated for each brain voxel based on local morphometry. At each level of segmentation a supervised classifier takes advantage of a different subset of the features to conservatively segment lesion voxels, passing on more difficult voxels to the next classifier. This multi-level approach allows for a fast lesion classification method with tunable trade-offs between sensitivity and specificity producing accuracy comparable to a human rater.
机译:我们展示了一种自动化的多级方法来分割白质脑病变并将其应用于狼疮。该方法利用基于多个MR序列的局部形态特征,包括T1加权,T2加权和流体衰减反演恢复。经过预处理(包括共注册,脑提取,偏差校正和强度标准化)后,会根据局部形态学为每个脑素计算49个特征。在分割的每个级别,监督分类器都利用特征的不同子集来保守地分割病变体素,将更困难的体素传递给下一个分类器。这种多级方法可实现一种快速的病灶分类方法,在敏感性和特异性之间可调节的取舍可以与人类评估者相提并论。

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